Methods for Compensating Contrast Effects in Information Visualization

Color, as one of the most effective visual variables, is used in many techniques to encode and group data points according to different features. Relations between features and groups appear as visual patterns in the visualization. However, optical illusions may bias the perception at the first leve...

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Bibliographic Details
Published inComputer graphics forum Vol. 33; no. 3; pp. 231 - 240
Main Authors Mittelstädt, S., Stoffel, A., Keim, D. A.
Format Journal Article
LanguageEnglish
Published Oxford Blackwell Publishing Ltd 01.06.2014
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Summary:Color, as one of the most effective visual variables, is used in many techniques to encode and group data points according to different features. Relations between features and groups appear as visual patterns in the visualization. However, optical illusions may bias the perception at the first level of the analysis process. For instance, in pixel‐based visualizations contrast effects make pixels appear brighter if surrounded by a darker area, which distorts the encoded metric quantity of the data points. Even if we are aware of these perceptual issues, our visual cognition system is not able to compensate these effects accurately. To overcome this limitation, we present a color optimization algorithm based on perceptual metrics and color perception models to reduce physiological contrast or color effects. We evaluate our technique with a user study and find that the technique doubles the accuracy of users comparing and estimating color encoded data values. Since the presented technique can be used in any application without adaption to the visualization itself, we are able to demonstrate its effectiveness on data visualizations in different domains.
Bibliography:istex:6F7EE1C415B50CB8C42F4C2A74AA69FCC047DBAF
ArticleID:CGF12379
Supporting Information
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ISSN:0167-7055
1467-8659
DOI:10.1111/cgf.12379